Kzar Ahmed Asal, Mat Jafri Mohd Zubir, Mutter Kussay N, Syahreza Saumi
School of Physics, Universiti Sains Malaysia, Penang 11800, Malaysia.
Physics Department, Faculty of Science, Kufa University, Najaf 31001, Iraq.
Int J Environ Res Public Health. 2015 Dec 30;13(1):92. doi: 10.3390/ijerph13010092.
Decreasing water pollution is a big problem in coastal waters. Coastal health of ecosystems can be affected by high concentrations of suspended sediment. In this work, a Modified Hopfield Neural Network Algorithm (MHNNA) was used with remote sensing imagery to classify the total suspended solids (TSS) concentrations in the waters of coastal Langkawi Island, Malaysia. The adopted remote sensing image is the Advanced Land Observation Satellite (ALOS) image acquired on 18 January 2010. Our modification allows the Hopfield neural network to convert and classify color satellite images. The samples were collected from the study area simultaneously with the acquiring of satellite imagery. The sample locations were determined using a handheld global positioning system (GPS). The TSS concentration measurements were conducted in a lab and used for validation (real data), classification, and accuracy assessments. Mapping was achieved by using the MHNNA to classify the concentrations according to their reflectance values in band 1, band 2, and band 3. The TSS map was color-coded for visual interpretation. The efficiency of the proposed algorithm was investigated by dividing the validation data into two groups. The first group was used as source samples for supervisor classification via the MHNNA. The second group was used to test the MHNNA efficiency. After mapping, the locations of the second group in the produced classes were detected. Next, the correlation coefficient (R) and root mean square error (RMSE) were calculated between the two groups, according to their corresponding locations in the classes. The MHNNA exhibited a higher R (0.977) and lower RMSE (2.887). In addition, we test the MHNNA with noise, where it proves its accuracy with noisy images over a range of noise levels. All results have been compared with a minimum distance classifier (Min-Dis). Therefore, TSS mapping of polluted water in the coastal Langkawi Island, Malaysia can be performed using the adopted MHNNA with remote sensing techniques (as based on ALOS images).
减少水污染是沿海水域面临的一个重大问题。生态系统的沿海健康状况可能会受到高浓度悬浮沉积物的影响。在这项工作中,一种改进的霍普菲尔德神经网络算法(MHNNA)与遥感影像相结合,用于对马来西亚兰卡威岛沿海水域的总悬浮固体(TSS)浓度进行分类。所采用的遥感图像是2010年1月18日获取的先进陆地观测卫星(ALOS)图像。我们的改进使霍普菲尔德神经网络能够对彩色卫星图像进行转换和分类。样本是在获取卫星影像的同时从研究区域采集的。样本位置使用手持式全球定位系统(GPS)确定。TSS浓度测量在实验室进行,并用于验证(实际数据)、分类和准确性评估。通过使用MHNNA根据其在第1波段、第2波段和第3波段的反射率值对浓度进行分类来实现制图。TSS地图采用颜色编码以便于目视解释。通过将验证数据分为两组来研究所提出算法的效率。第一组用作通过MHNNA进行监督分类的源样本。第二组用于测试MHNNA的效率。制图完成后,检测第二组在生成类别中的位置。接下来,根据它们在类别中的相应位置,计算两组之间的相关系数(R)和均方根误差(RMSE)。MHNNA表现出更高的R(0.977)和更低的RMSE(2.887)。此外,我们用噪声对MHNNA进行了测试,结果证明它在一系列噪声水平下对有噪声图像也具有准确性。所有结果都与最小距离分类器(Min - Dis)进行了比较。因此,利用所采用的MHNNA和遥感技术(基于ALOS图像)可以对马来西亚兰卡威岛沿海污染水域的TSS进行制图。